Open-Set Source Tracing as Compositional Factors via Structured Prototypes
摘要
Recent research expands beyond binary anti-spoofing with the emergence of Source Tracing, the task of identifying the specific generative origins of synthetic speech. However, current research often equates a "source" with its generative architecture. We propose redefining a source as a compositional tuple of Architecture, Training Data, and other training factors affecting the generated speech. We propose a framework using Structured Orthonormal Prototypes to minimize class overlap and intra-class variance. Our Subspace Partitioning strategy splits the embedding into architecture and data subspaces, while a residual subspace captures stochastic variability, enabling "compositional generalization" for novel factor combinations. This approach improves performance for partially seen sources and maintains robustness in fully open-set scenarios. MLAAD evaluations for Few-Shot open-set Identification show our approach significantly outperforms angular-margin baselines.
引用
@article{arxiv.2607.03134,
title = {Open-Set Source Tracing as Compositional Factors via Structured Prototypes},
author = {Santiago Rubio and Antonio Almudévar and Antonio Miguel and Eduardo Lleida and Alfonso Ortega},
journal= {arXiv preprint arXiv:2607.03134},
year = {2026}
}
备注
Submitted to IEEE Spoken Language Technology Workshop (SLT) 2026